P. Beauseroy, A. Smolarz, Yuan Dong, Xiyan He
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摘要

在集成决策方法的基础上,提出了一种动态决策方法。它被设计成对传感器响应的突变具有鲁棒性。在自主传感器网络中,脉冲噪声、传感器退化或传输故障可能引起突变。它也可能由传感器响应的不一致引起,这是由于一个被监测系统属性的局部或突然中断。其主要思想是将决策划分为几个部分决策,然后将这些决策汇总以得到最终决策。自适应是聚合过程的结果,聚合过程的目的是根据学习模型选择和总结基于连贯信息的部分决策。提出了建议的方法。对两类图像分割问题进行了实验分析。结果表明,该方法在突变条件下具有较强的鲁棒性,能够有效地选择局部决策者。这种方法开辟了广阔的应用领域,结果令人鼓舞。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Decision Method Based on Contextual Selection of Representation Subspaces
This paper presents a dynamical decision method derived from ensemble decision method. It is designed to be robust with respect to abrupt change of sensor response. Abrupt change may be caused by impulsive noise, sensor degradation or transmission fault in the case of an autonomous sensor network. It can also be caused by inconsistency of sensor responses due to local or sudden break of one monitored system property. The main idea is to divide the decision into several partial decisions and then to aggregate these to get the final one. The adaptation is the result of the aggregation process which aims at selecting and summarizing the partial decisions which are based on coherent information according to learnt models. The suggested method is presented. Experiments on a two-class image segmentation problem are performed and analyzed. The results assessed that the suggested method is more robust when an abrupt change occurs and is able to select efficiently the partial decision makers. This approach opens a wide field of applications and results are very encouraging.
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